多分辨率过程神经网络及其学习算法

Y. Li, Yi An, N. Yu, Rui-bo Zhu
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引用次数: 0

摘要

基于多分辨率分析理论和过程神经网络模型,提出了一种集层次、多分辨率和局部学习能力于一体的多分辨率过程神经网络(MRPNN)模型。这种类型的神经网络易于处理连续输入信号,使预测时间序列问题成为可能。此外,为了逼近非线性系统,使用隐层来处理非线性和复杂问题。在正交基函数展开的基础上,提出了一种新的学习算法,对输入函数和网络权函数进行扩展,然后通过定位高误差区域并添加从当前局部节点的高分辨率空间获得激活函数的节点来构建网络,其支持落在高误差区域内。最后,利用该网络对电力系统中期负荷进行预测。仿真结果表明,该网络具有较好的收敛性和较高的精度。该方法为电力系统中期负荷预测提供了有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiresolution process neural network and its learning algorithm
A new model of multiresolution process neural network (MRPNN) which incorporates the characteristics of hierarchical, multiresolution and local learning capability is proposed based on the multiresolution analysis theory and process neural network model. This type of neural network facilitates in tackling with continuous input signals, which makes it possible to forecast time series problem. In addition, in order to approximate the nonlinear system, the hidden layer is used to deal with the nonlinear and complexity problems. A novel learning algorithm is given to expand the input functions and network weight functions based on the expansion of the orthogonal basis functions, subsequently The learning algorithm then builds the network by locating high error regions and adding nodes that get its activation function from the higher resolution space of the current local node, and its support falls within the high error region. Finally, the network is used to forecast the medium-term load of power system. Simulation results show that the network has good convergence and high accuracy. This method provides an effective solution to medium-term load forecasting in power system.
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